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基于动态状态空间模型推断的一种海洋鱼类的精细种群动态

Fine-scale population dynamics in a marine fish species inferred from dynamic state-space models.

作者信息

Rogers Lauren A, Storvik Geir O, Knutsen Halvor, Olsen Esben M, Stenseth Nils C

机构信息

Centre for Ecological and Evolutionary Synthesis (CEES), Department of Biosciences, University of Oslo, PO Box 1066, Blindern, 0316, Oslo, Norway.

Alaska Fisheries Science Center, National Oceanic and Atmospheric Administration, 7600 Sand Point Way NE, Seattle, WA, 98115, USA.

出版信息

J Anim Ecol. 2017 Jul;86(4):888-898. doi: 10.1111/1365-2656.12678. Epub 2017 May 17.

Abstract

Identifying the spatial scale of population structuring is critical for the conservation of natural populations and for drawing accurate ecological inferences. However, population studies often use spatially aggregated data to draw inferences about population trends and drivers, potentially masking ecologically relevant population sub-structure and dynamics. The goals of this study were to investigate how population dynamics models with and without spatial structure affect inferences on population trends and the identification of intrinsic drivers of population dynamics (e.g. density dependence). Specifically, we developed dynamic, age-structured, state-space models to test different hypotheses regarding the spatial structure of a population complex of coastal Atlantic cod (Gadus morhua). Data were from a 93-year survey of juvenile (age 0 and 1) cod sampled along >200 km of the Norwegian Skagerrak coast. We compared two models: one which assumes all sampled cod belong to one larger population, and a second which assumes that each fjord contains a unique population with locally determined dynamics. Using the best supported model, we then reconstructed the historical spatial and temporal dynamics of Skagerrak coastal cod. Cross-validation showed that the spatially structured model with local dynamics had better predictive ability. Furthermore, posterior predictive checks showed that a model which assumes one homogeneous population failed to capture the spatial correlation pattern present in the survey data. The spatially structured model indicated that population trends differed markedly among fjords, as did estimates of population parameters including density-dependent survival. Recent biomass was estimated to be at a near-record low all along the coast, but the finer scale model indicated that the decline occurred at different times in different regions. Warm temperatures were associated with poor recruitment, but local changes in habitat and fishing pressure may have played a role in driving local dynamics. More generally, we demonstrated how state-space models can be used to test evidence for population spatial structure based on survey time-series data. Our study shows the importance of considering spatially structured dynamics, as the inferences from such an approach can lead to a different ecological understanding of the drivers of population declines, and fundamentally different management actions to restore populations.

摘要

确定种群结构的空间尺度对于自然种群的保护以及得出准确的生态推断至关重要。然而,种群研究通常使用空间上聚合的数据来推断种群趋势和驱动因素,这可能会掩盖具有生态相关性的种群亚结构和动态。本研究的目的是调查具有和不具有空间结构的种群动态模型如何影响对种群趋势的推断以及对种群动态内在驱动因素(如密度依赖性)的识别。具体而言,我们开发了动态、年龄结构的状态空间模型,以检验关于沿海大西洋鳕鱼(Gadus morhua)种群复合体空间结构的不同假设。数据来自对挪威斯卡格拉克海岸200多公里沿线的幼鱼(0龄和1龄)鳕鱼进行的为期93年的调查。我们比较了两个模型:一个假设所有采样的鳕鱼都属于一个更大的种群,另一个假设每个峡湾都包含一个具有局部确定动态的独特种群。然后,使用得到最佳支持的模型,我们重建了斯卡格拉克海岸鳕鱼的历史时空动态。交叉验证表明,具有局部动态的空间结构模型具有更好的预测能力。此外,后验预测检验表明,假设一个同质种群的模型未能捕捉到调查数据中存在的空间相关模式。空间结构模型表明,不同峡湾的种群趋势差异显著,包括密度依赖性生存在内的种群参数估计也是如此。据估计,近期沿海各地的生物量接近历史最低水平,但更精细尺度的模型表明,不同地区的下降发生在不同时间。温暖的温度与幼鱼补充不足有关,但栖息地和捕捞压力的局部变化可能在驱动局部动态方面发挥了作用。更一般地说,我们展示了如何使用状态空间模型根据调查时间序列数据来检验种群空间结构的证据。我们的研究表明了考虑空间结构动态的重要性,因为这种方法得出的推断可能会导致对种群数量下降驱动因素的不同生态理解,以及恢复种群的根本不同的管理行动。

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